从非正式到正式:科学知识角色转变预测

IF 3.5 3区 管理学 Q2 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS
Jinqing Yang, Zhifeng Liu, Yong Huang
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引用次数: 0

摘要

了解知识演变的模式有利于资助机构、政策制定者和研究人员提出创造性的想法。我们引入了科学知识角色转换的概念,即从非正式到正式的演变。我们研究了不同因素如何影响科学知识的角色转换,考虑了两个主要层面--转换速度和转换可能性。通过解释性机器学习模型,我们发现梯度提升分类器(Gradient Boosting classifier)在预测过渡可能性方面表现更佳,而随机森林回归(Random Forests regression)在预测过渡速度方面最为有效。具体来说,知识属性特征对过渡可能性的影响更明显,而知识网络结构对过渡速度的影响更大。我们进一步发现,知识相关性和引用次数对知识角色转换有负向影响,而采用频率、知识引用网络中的非度中心性、自我中心共现网络节点数和科学知识的期刊影响力则有正向影响。上述发现增强了我们对科学知识演化模式的理解,为我们洞察科技进步的轨迹提供了依据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

From informal to formal: scientific knowledge role transition prediction

From informal to formal: scientific knowledge role transition prediction

Comprehending the patterns of knowledge evolution benefits funding agencies, policymakers, and researchers in developing creative ideas. We introduce the notation of scientific knowledge role transition as an evolution from informal to formal. We investigate how different factors affect the role transition of scientific knowledge, considering the two primary levels—transition pace and transition possibility. The interpretive machine learning models are conducted to discover that the Gradient Boosting classifier performs better for predicting transition possibility, and Random Forests regression is the most effective for predicting transition pace. Specifically, knowledge attribute features have a more obvious effect on the transition probability, while knowledge network structure has a greater effect on the transition pace. We further find that knowledge relatedness and citation number have negative effects on knowledge role transition, while adoption frequency, indegree centrality in the knowledge citation network, node number of the egocentric co-occurrence network, and journal impact of scientific knowledge have positive effects. The aforementioned discoveries enhance our comprehension of scientific knowledge evolution patterns and provide insight into the trajectory of scientific and technological advancement.

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来源期刊
Scientometrics
Scientometrics 管理科学-计算机:跨学科应用
CiteScore
7.20
自引率
17.90%
发文量
351
审稿时长
1.5 months
期刊介绍: Scientometrics aims at publishing original studies, short communications, preliminary reports, review papers, letters to the editor and book reviews on scientometrics. The topics covered are results of research concerned with the quantitative features and characteristics of science. Emphasis is placed on investigations in which the development and mechanism of science are studied by means of (statistical) mathematical methods. The Journal also provides the reader with important up-to-date information about international meetings and events in scientometrics and related fields. Appropriate bibliographic compilations are published as a separate section. Due to its fully interdisciplinary character, Scientometrics is indispensable to research workers and research administrators throughout the world. It provides valuable assistance to librarians and documentalists in central scientific agencies, ministries, research institutes and laboratories. Scientometrics includes the Journal of Research Communication Studies. Consequently its aims and scope cover that of the latter, namely, to bring the results of research investigations together in one place, in such a form that they will be of use not only to the investigators themselves but also to the entrepreneurs and research workers who form the object of these studies.
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